At least one aspect is directed to determining an estimate of an intersection of user identifiers in a first set of user identifiers and a second set of user identifiers. The first and second sets of user identifiers can be populated with user identifiers that have interacted with the same content item or content item campaign. Estimates of intersections of the first and the second sets can be determined based on a binomial vector approach, a vector of counts approach, or a hybrid approach. The binomial vector approach generates vectors based on k hashes of each user identifier in the first set and summing the vectors to generate a first vector. The intersection can be determined based on a dot product of the first vector and a second vector similarly generated from the second set of user identifiers.
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7. A system comprising one or more processors, the one or more processors configured to:
transmit, via a network, a set of hash functions to a first content delivery platform;
transmit, via the network, the set of hash functions to a second content delivery platform;
receive, via the network, a first vector from the first content delivery platform, each coordinate of the first vector being equal to a sum based on a plurality of hashes generated using the set of hash functions, with each hash of the plurality of hashes calculated from one of a plurality of user interactions with a set of content items occurring via the first content delivery platform;
receive, via the network, a second vector from the second content delivery platform, each coordinate of the second vector being equal to a sum based on a second plurality of hashes generated using the set of hash functions, with each hash of the second plurality of hashes calculated from one of a plurality of user interactions with the set of content items occurring via the second content delivery platform;
estimate a number of user interactions with the set of content items occurring via the first content delivery platform based on a sum of the elements of the first vector;
estimate a number of user interactions with the set of content items occurring via the second content delivery platform based on a sum of the elements of the second vector;
estimate a number of unique user interactions with the set of content items provided by both the first content delivery platform and the second content delivery platform based on a sum of the number of user interactions with the set of content items occurring via the first content delivery platform and the number of user interactions with the set of content items occurring via the second content delivery platform minus a dot product of the first vector and the second vector;
wherein the one or more processors are further configured to receive a first plurality of vectors from the first content delivery platform, wherein each of the first plurality of vectors corresponds to one hash in the set of hash functions;
wherein the one or more processors are further configured to receive a second plurality of vectors from the second content delivery platform, wherein each of the second plurality of vectors corresponds to one hash in the set of hash function; and
wherein the one or more processors are further configured to estimate the number of unique user interactions based on the dot product of each vector in the first plurality of vectors and the second plurality of vectors.
1. A method for estimating the number of unique user interactions with a set of content items provided by different content delivery platforms comprising:
transmitting, via a network, a set of hash functions to a first content delivery platform;
transmitting, via the network, the set of hash functions to a second content delivery platform;
receiving, via the network, a first vector from the first content delivery platform, each coordinate of the first vector being equal to a sum based on a plurality of hashes generated using the set of hash functions, with each hash of the plurality of hashes calculated from one of a plurality of user interactions with the set of content items occurring via the first content delivery platform;
receiving, via the network, a second vector from the second content delivery platform, each coordinate of the second vector being equal to a sum based on a second plurality of hashes generated using the set of hash functions, with each hash of the second plurality of hashes calculated from one of a plurality of user interactions with the set of content items occurring via the second content delivery platform;
estimating a number of user interactions with the set of content items occurring via the first content delivery platform based on a sum of the elements of the first vector;
estimating a number of user interactions with the set of content items occurring via the second content delivery platform based on a sum of the elements of the second vector;
estimating a number of unique user interactions with the set of content items provided by both the first content delivery platform and the second content delivery platform based on a sum of the number of user interactions with the set of content items occurring via the first content delivery platform and the number of user interactions with the set of content items occurring via the second content delivery platform minus a dot product of the first vector and the second vector;
wherein receiving the first vector from the first content delivery platform comprises receiving a first plurality of vectors from the first content delivery platform, wherein each of the first plurality of vectors corresponds to one hash in the set of hash functions;
wherein receiving the second vector from the second content delivery platform comprises receiving a second plurality of vectors from the second content delivery platform, wherein each of the second plurality of vectors corresponds to one hash in the set of hash functions; and
wherein estimating the number of unique user interactions is based on the dot product of each vector in the first plurality of vectors and the second plurality of vectors.
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This application is a continuation of and claims priority to U.S. patent application Ser. No. 16/564,130 filed on Sep. 9, 2019,
In a computer networked environment such as the internet, third-party content providers provide third-party content items for display on end-user computing devices. These third-party content items, for example, advertisements, can be displayed on a web page associated with a respective publisher. These third-party content items can include content identifying the third-party content provider that provided the content item.
One technical issue addressed by the present disclosure is the difficulty in determining the total number of interactions between users and a set of content items from two different content delivery platforms by a third party while maintaining the privacy of the users. For example, a third party may want to estimate the total number of user interactions with a certain set of content items across two separate content delivery platforms. However, sending all the information about the users and their interactions to the third party from each content delivery platform will provide the third party with private information about each user. The challenges addressed in this disclosure relate to providing the third party with enough data to estimate the total interactions the users with a certain set of content items while maintaining the privacy of the users of each content delivery platform.
By hashing each user interaction, one is able to preserve the privacy of the users while maintaining some information about the user interactions. This information is a deterministic set of bits that can be used in further computation, but contains no specific information about the individual users or their interactions. Pieces of these hashes can be used to construct data structures called vectors. A user interaction that is present on two different content delivery platforms will have the same quantitative contribution to the vector of each platform, because the hashing operations used on the user interaction data is deterministic. The vector can be sent to a third party which is capable of processing vectors from two different content delivery platforms to estimate the total number of user interactions with a set of content items across both platforms using statistical analysis.
This application claims priority to provisional application 62/870,970 filed on Jul. 5, 2019, and provisional application 62/877,251 filed on Jul. 22, 2019. The contents of each are incorporated within here by reference.
At least one aspect is directed to a method for estimating the number of unique user interactions with a set of content items provided by different content delivery platforms. The method includes transmitting, via a network, a set of hash functions to a first content delivery platform. The method further includes transmitting, via a network, the set of hash functions to a second content delivery platform. The method also includes receiving, via a network, a first vector from the first content delivery platform, each coordinate of the first vector being equal to a sum based on a plurality of hashes, with each hash calculated from one of a plurality of user interactions with the set of content items occurring via the first content delivery platform. The method also includes receiving, via a network, a second vector from the second content delivery platform, each coordinate of the second vector being equal to a sum based on a plurality of hashes, with each hash calculated from one of a plurality of user interactions with the set of content items occurring via the second content delivery platform. The method further includes estimating a number of user interactions with the set of content items occurring via the first content delivery platform based on a sum of the elements of the first vector. The method also includes estimating a number of user interactions with the set of content items occurring via the second content delivery platform based on a sum of the elements of the second vector. The method further includes estimating a number of unique user interactions with the set of content items provided by both the first content delivery platform and the second content delivery platform based on the number of user interactions with the set of content items occurring via the first content delivery platform, the number of user interactions with the set of content items occurring via the second content delivery platform, and a dot product of the first and the second vector.
In some implementations, the method includes transmitting, via a network, a first request for a first vector to a first content delivery platform. In some implementations, the method includes transmitting, via a network, a second request for a second vector to a second content delivery platform. In some implementations, the first request comprises a set of hash functions. In some implementations the second request comprises a set of hash functions. In some implementations, the method comprises estimating the total number of user interactions with the set of content items occurring via the first content delivery network based on twice the total sum of all coordinates in the first vector divided by the number of coordinates in the first vector. In some implementations, the method comprises estimating the total number of user interactions with the set of content items occurring via the second content delivery network based on twice the total sum of all coordinates in the second vector divided by the number of coordinates in the second vector. In some implementations, the method comprises estimating a number of unique user interactions with the set of content items provided by the both the first content delivery platform and the second content delivery platform based on the number of user interactions with the set of content items occurring via the first content delivery platform, the number of user interactions with the set of content items occurring via the second content delivery platform, and the covariance of the first vector and the second vector.
At least another aspect is directed to a method for providing anonymous data about user interactions with a set of content items. The method includes receiving, via a network, data to identify a set of hash functions. The method further includes retrieving a plurality of user identifiers, each of the user identifiers identifying interaction with a set of content items by a respective user of the plurality. The method further includes for each of the plurality of user identifiers, generating k hashes of the user identifier, each hash corresponding to one of the set of hash functions, and generating a user vector, each coordinate of the user vector corresponding to a bit value of a respective hash. The method also includes generating an interaction vector by summing the plurality of generated user vectors. The method further includes transmitting, via a network, the generated interaction vector via a network to the requesting party.
At least another aspect is directed to a method for providing anonymous data about user interactions with a set of content items. The method includes receiving, via a network, a request via a network for an interaction vector from a requesting party, the request comprising data to identify a hash function. The method further includes retrieving a plurality of user identifiers, each of the user identifiers identifying interaction with a set of content items by a respective user of the plurality. The method also includes for each of the plurality of user identifiers, generating a hash value of the user identifier using the hash function included in the request, determining a value of a first m-bits of the hash value, and incrementing a count of a register corresponding to the value, the register being one of k registers, where k=2{circumflex over ( )}m. The method also includes generating an interaction vector, each coordinate of the interaction vector being equal to a count of a corresponding kth register. The method further includes transmitting, via a network, the generated interaction vector via a network to the requesting party.
In another aspect, the present disclosure is directed to a system comprising one or more processors configured to estimate the number of unique user interactions with a set of content items provided by different content delivery platforms. In some implementations, the one or more processors are configured to transmit, via a network, a set of hash functions to a first content delivery platform. In some implementations, the one or more processors are configured to transmit, via a network, the set of hash functions to a second content delivery platform. In some implementations the one or more processors are configured to receive, via a network, a first vector from the first content delivery platform, each coordinate of the first vector being equal to a sum based on a plurality of hashes, with each hash calculated from one of a plurality of user interactions with the set of content items occurring via the first content delivery platform. In some implementations, the one or more processors are configured to receive, via a network, a second vector from the second content delivery platform, each coordinate of the second vector being equal to a sum based on a plurality of hashes, with each hash calculated from one of a plurality of user interactions with the set of content items occurring via the second content delivery platform. In some implementations, the one or more processors are configured to estimate a number of user interactions with the set of content items occurring via the first content delivery platform based on a sum of the elements of the first vector. In some implementations, the one or more processors are configured to estimate a number of user interactions with the set of content items occurring via the second content delivery platform based on a sum of the elements of the second vector. In some implementations, the one or more processors are configured to estimate a number of unique user interactions with the set of content items provided by both the first content delivery platform and the second content delivery platform based on the number of user interactions with the set of content items occurring via the first content delivery platform, the number of user interactions with the set of content items occurring via the second content delivery platform, and a dot product of the first vector and the second vector.
In another aspect, the present disclosure is directed to a system comprising one or more processors configured to provide anonymous data about user interactions with a set of content items. In some implementations, the one or more processors are configured to receive, via a network, data to identify a set of hash functions. In some implementations, the one or more processors are configured to retrieve a plurality of user identifiers, each of the user identifiers identifying interaction with a set of content items by a respective user of the plurality. In some implementations, the one or more processors are configured to, for each of the plurality of user identifiers, generate k hashes of the user identifier, each hash corresponding to one of the set of hash functions, and generate a user vector, each coordinate of the user vector corresponding to a bit value of a respective hash. In some implementations, the one or more processors are configured to generate an interaction vector by summing the plurality of generated user vectors. In some implementations, the one or more processors are configured to transmit, via a network, the generated interaction vector.
In another aspect, the present disclosure is directed to a system comprising one or more processors, the processors configured to provide anonymous data about user interactions with a set of content items. In some implementations, the one or more processors are configured to receive, via a network, data to identify a set of hash functions. In some implementations, the one or more processors are configured to retrieve a plurality of user identifiers, each of the user identifiers identifying interaction with a set of content items by a respective user of the plurality. In some implementations, the one or more processors are configured to, for each of the plurality of user identifiers, generate a hash value of the user identifier using the hash function included in the request, determine a value of a first m-bits of the hash value, and increment a count of a register corresponding to the value, the register being one of k registers, where k=2{circumflex over ( )}m. In some implementations, the one or more processors are configured to generate an interaction vector, each coordinate of the interaction vector being equal to a count of a corresponding kth register. In some implementations, the one or more processors are configured to transmit, via a network, the generated interaction vector.
These and other aspects and implementations are discussed in detail below. The foregoing information and the following detailed description include illustrative examples of various aspects and implementations, and provide an overview or framework for understanding the nature and character of the claimed aspects and implementations. The drawings provide illustration and a further understanding of the various aspects and implementations, and are incorporated in and constitute a part of this specification.
The accompanying drawings are not intended to be drawn to scale. Like reference numbers and designations in the various drawings indicate like elements. For purposes of clarity, not every component may be labeled in every drawing. In the drawings:
Below are detailed descriptions of various concepts related to, and implementations of, methods, apparatuses, and systems of privacy preserving determination of intersection of sets of user identifiers. The various concepts introduced above and discussed in greater detail below may be implemented in any of numerous ways, as the described concepts are not limited to any particular manner of implementation.
The content item distribution system, or content delivery platform, such as the first data computing system 104 and the second data computing system 106 can keep records of the user identifiers related to the content items provided to the user devices 108. These records can include, for example, a list of user identifiers associated with users or user devices that were rendered with a particular set of content items or that interacted (e.g., clicked on) with the content item. These lists of user identifiers are sometimes referred to as “sketches.” A publisher, such as the first data computing system 102, can determine the effectiveness of a content item or a content item campaign by analyzing the sketches received from the content item distribution systems. For example, the publisher can determine the effectiveness of a content item campaign by determining the number of users that interacted with the content items in the content item campaign. The publisher can request the content item distribution systems to provide the publisher with sketches associated with the content item campaign. A sketch can include user identifiers of the users or user devices that interacted with the content item campaign. The publisher may add the number of user identifiers included in the received sketches to determine the number of users that interacted with the content item. However, sketches received from two different content item distribution systems may include duplicate user identifiers, resulting in counting the duplicate user identifiers twice, and therefore, resulting in an inaccurate count. The duplicate identifiers can be a result of, for example, same users or user devices interacting with the same content item distributed by the two content item distribution systems. To determine the actual number of users that interacted with the content item, the publisher needs to remove duplicate user identifiers. One approach to removing the duplicate identifiers can be to determine the intersection of the two sketches, where the intersection includes the user identifiers that are common to both sketches, and then removing that number from the sum of the sketches to arrive at the actual count of unique user identifiers of users that interacted with the content item.
However, determining the intersection of the two sets of user identifiers can be computationally costly. For example, in some instances, each sketch can include hundreds of thousands if not millions of user identifiers. Determining unique set of user identifiers from the two large sets can be computationally costly or even infeasible. In some instances, cardinality estimation algorithms can be utilized to determine an estimate of the unique number of user identifiers in the sketches. Examples of cardinality estimation algorithms can include hyperloglog, probabilistic counting with stochastic averaging (PCSA), kth minimal value (KMV), etc. Each of these algorithms can estimate the cardinality, i.e., a unique number of members in a multiset, in a computationally efficient manner. However, these algorithms can indicate information on individual members of the sketches.
The following discusses a set of approaches that can be utilized in determining the intersection of the sketches in a computationally efficient manner that also preserves the privacy of the user identifiers in the sketches. In particular, three approaches: a binomial vector approach, a vector of counts approach, and a hybrid approach are discussed, each of which can determine the user identifiers at the intersection of two sketches while preserving the privacy of the user identifiers in those sketches.
In brief overview of
In further detail of step 202, a set of hashes is transmitted to the first content delivery platform. The set of hashes may contain many hashes. The set of hashes may contain only one hash. The set of hashes may contain the identity hash function. The set of hashes may be transmitted as part of a request for user interaction data from the first content delivery platform. The set of hashes may be transmitted over the network 110. In some implementations, the set of hash functions may be identifiers directing the first content delivery platform to use certain hash functions. In some implementations, the set of hash functions may be a single binary containing computer instructions to execute a set of hash functions. In some implementations, the set of hash functions may be many binaries, each binary containing computer instructions to execute a hash function. In some implementations, the set of hash functions may be many binaries, each binary containing code to execute a subset of the hash functions in the set of hash functions.
In further detail of step 204, a set of hashes is transmitted to the second content delivery platform. The set of hashes may contain many hashes. The set of hashes may contain only one hash. The set of hashes may contain the identity hash function. The set of hashes may be transmitted as part of a request for user interaction data from the first content delivery platform. The set of hashes may be transmitted over the network 110. In some implementations, the set of hash functions may be identifiers directing the second content delivery platform to use certain hash functions. In some implementations, the set of hash functions may be a single binary containing computer instructions to execute a set of hash functions. In some implementations, the set of hash functions may be many binaries, each binary containing computer instructions to execute a hash function. In some implementations, the set of hash functions may be many binaries, each binary containing code to execute a subset of the hash functions in the set of hash functions.
In further detail of step 206, the method receives a first vector representing user interactions from the first content delivery platform. In some implementations, the vector may be a binomial vector of counts. In some implementations, the number of coordinates in the vector is equal to the number of hash functions in the set of hash functions. In some implementations, each coordinate in the vector could correspond to a hash function in the set of hash functions. In some embodiments, each coordinate of the vector could be equal to the sum of a single bit of the hashes of each user identifier provided by the first content delivery platform, where each coordinate corresponds to a hash function in the set of hash functions. In some implementations, the number of coordinates in the vector could be equal to 2{circumflex over ( )}k, where k is the number of hash functions in the set of hash functions. In some implementations, while receiving the first vector representing user interactions from the first content delivery platform, the method 200 may also receive the number of user identifiers that interacted with the set of content items from the first content delivery platform.
In further detail of step 208, the method receives a second vector representing user interactions from the second content delivery platform. In some implementations, the vector may be a binomial vector of counts. In some implementations, the number of coordinates in the vector is equal to the number of hash functions in the set of hash functions. In some implementations, each coordinate in the vector could correspond to a hash function in the set of hash functions. In some embodiments, each coordinate of the vector could be equal to the sum of a single bit of the hashes of each user identifier provided by the first content delivery platform, where each coordinate corresponds to a hash function in the set of hash functions. In some implementations, the number of coordinates in the vector could be equal to 2{circumflex over ( )}k, where k is the number of hash functions in the set of hash functions. In some implementations, while receiving the second vector representing user interactions from the second content delivery platform, the method 200 may also receive the number of user identifiers that interacted with the set of content items from the second content delivery platform.
In some implementations, the cardinality of the first vector and the second vector can be the same. In some implementations, the cardinality of the first vector and the second vector will be different. The cardinality of the first vector can be a power of two. The cardinality of the second vector can be a power of two. In some embodiments, the method 200 may determine either the first vector to have a larger cardinality than the second vector or the second vector to have a larger cardinality than the first vector. In such embodiments, the method 200 may down-sample the larger of the two vectors to match the cardinality of the smaller of the two vectors. In such embodiments, the vectors may both have a cardinality that is equal to a power of two. The down-sampling may be performed by summing the values in the coordinates of the larger vector congruent to the modulus of the cardinality of the smaller vector. In a non-limiting example, consider the first vector having a cardinality of 8, and the second vector having a cardinality of 4. To make the cardinality of the first vector and the second vector equal, down-sampling is performed on the first vector. In this non-limiting exampling embodiment, down-sampling is performed by summing the last four coordinates of the first vector with the first four coordinates of the first vector, to generate a vector with cardinality four.
In further detail of step 210, the method estimates the total number of user interactions from the first content delivery platform. In some implementations, the number of user interactions is based off the vector provided by the first content delivery platform in step 206. The number of user interactions can be estimated by summing each coordinate in the vector of user interactions provided by the first content delivery platform and dividing that sum by the number of coordinates in the vector. The number of user interactions can be estimated by summing each coordinate in the vector of user interactions provided by the first content delivery platform, multiplying that number by two, and dividing by the number of coordinates in the vector. The estimated number of user interactions can also be received from the first content delivery platform, for example over network 110. In some embodiments, the exact number of user interactions can also be received from the first content delivery platform, for example over network 110. In such embodiments, the exact value is used by the method 200 as the estimated value.
In further detail of step 212, the method estimates the total number of user interactions from the second content delivery platform. In some implementations, the number of user interactions is based off the vector provided by the second content delivery platform in step 208. The number of user interactions is estimated by summing each coordinate in the vector of user interactions provided by the second content delivery platform and dividing that sum by the number of coordinates in the vector. The number of user interactions is estimated by summing each coordinate in the vector of user interactions provided by the second content delivery platform, multiplying that number by two, and dividing by the number of coordinates in the vector. The estimated number of user interactions can also be received from the second content delivery platform, for example over network 110. In some embodiments, the exact number of user interactions can also be received from the second content delivery platform, for example over network 110. In such embodiments, the exact value is used by the method 200 as the estimated value.
In further detail of step 214, the method can estimate the number of unique user interactions with the set of content items provided by the first and second content delivery platforms using a dot product. The estimate of the number of unique user interactions can be equal to the sum of the estimated number of user interactions from the first and second content delivery platforms, minus the intersection of the sets 306. In some implementations, a dot product is used to calculate the intersection of the sets 306 based on the vectors received in steps 206 and 208. In some implementations, the intersection between sets 306 is calculated by multiplying the dot product of the vectors received in steps 206 and 208 by four and dividing by the number of coordinates in the vectors. In some implementations, the intersection between sets 306 is calculated by multiplying the covariance of the vectors received in steps 206 and 208 by four. In some implementations, the intersection between the sets 306 can be calculated by taking the dot product of a plurality of vectors of counts, and taking the average of the plurality of dot products.
In a non-limiting example embodiment of step 214, the intersection of the sets 206 must first be calculated based on the first vector and the second vector received in step 206 and 208 respectively. In the example embodiment described herein, both the first and second vectors are vectors of counts generated using method 500. Because each vector is based on a sum of the user identifiers, each vector can be considered the sum of three different vectors: a vector representing user identifiers that are present on the first and second content delivery platforms (represented below as z), user identifiers that are unique to the first or second content delivery platform (represented below as u), and a vector of noise (represented below as e). The expected value (i.e. estimate) of the dot product of the first and second vectors can be represented by the equation below:
E(v1·v2)=E[(z+u1+e1)·(z+u1+e1)]
When written in an expanded form, the equation above can be written as:
E(v1·v2)=E(z·z)+E(z·u1)+E(z·u2)+E(u1·u2)+E(z·e1)+E(z·e1)+E(u2·e1)+E(u1·e2)+E(e1·e2)
In this example, if the noise terms are drawn from zero-centered distributions and are independent from all other terms, their expected value of their dot products is equal to zero. Therefore, all terms in the above equation containing noise from either the first vector (e1) or second vector (e2) are equal to zero. In this example, the first vector and second vector are mean subtracted (i.e., the average of all coordinates of each vector is subtracted from each coordinate of the respective vector). Further, because they are unique to either first or second vector, the disjoint portions of the two vectors u1 and u2 are considered independent. Therefore, the expected values of their dot products are also zero. In this non-limiting example, with the assumptions made above, the equation listed above is reduced to the equation provided below.
E(v1·v2)=E(z·z)
In further detail of the non-limiting example above, consider that a user identifier from the first content delivery platform has a probability 1/k of contributing to any one coordinate of the first vector, where the first vector has a cardinality of k. In the interest of this non-limiting example, the same assumptions are made for the second vector, except based on the user identifiers from the second content delivery platform. In this example, each coordinate of the first and second vectors approximate a binomial distribution with probability 1/k and number of trials Ni, where the number of trials is equal to the number of user identifiers that contribute to the respective vector. For a large value of Ni, the distribution for any coordinate could be approximated by a Guassian distribution with variance as shown below.
Var[vi(j)]=Ni(k−1)/k2
In the equation above, vi(j) represents the jth coordinate of vector vi, where i represents either the first or second vector. To continue the analysis of the non-limiting example, consider the expanded form of the expected value of the dot product of the first and second vector below.
In the equation above, z(j) represents the jth coordinate of the vector z, which is defined above. Based on our previous analysis, z(j) must also be approximated with a Gaussian distribution. Therefore, in this non-limiting example, we can simplify the above equation to the one provided below.
In the equation above, N12 represents the number of user identifiers that have interacted with a set of content items on both the first and second content delivery platforms. Note that for a sufficiently large k, the value of (k−1)/k is about equal to 1. Therefore, in a final simplification step, one could arrive at the equation below.
Therefore, in this non-limiting example, based on the assumptions made above, one could calculate the number of user interactions common to both content delivery platforms by using a dot product. In some embodiments, this example could be used as a part of step 214 to calculate the number of unique user interactions across both the first and second content delivery platform. In this example, the variance of the estimated value of the number of user interactions common to both content delivery platforms is described in the equation below.
In the above equation, ε is equal to the inverse of the Laplacian noise scale.
In further detail of step 216, the first content delivery platform can calculate a vector representing user interactions with a set of content items provided by the first content delivery platform The systems and methods for calculating the vector representing user interactions with a set of content items provided by the first content delivery platform are elaborated upon later in the specification. In further detail of step 218, the first content delivery platform can transmit the vector representing user interactions calculated in step 216 over a network, for example, network 110, to be used in method 200. In some implementations, step 218 may also include sending the exact number of user interactions represented by the vector to be used in method 200. In some implementations, step 218 may also include sending an estimate the number of user interactions represented by the vector to be used in method 200. The systems and methods for calculating and transmitting the vector representing user interactions with a set of content items provided by the first content delivery platform are elaborated upon later in the specification.
In further detail of step 220, the first content delivery platform can calculate a vector representing user interactions with a set of content items provided by the first content delivery platform. The systems and methods for calculating the vector representing user interactions with a set of content items provided by the first content delivery platform are elaborated upon later in the specification. In further detail of step 222, the first content delivery platform can transmit the vector representing user interactions calculated in step 220 over a network to be used in method 200. In some implementations, step 222 may also include sending the number of user interactions represented by the vector to be used in method 200. The systems and methods for calculating and transmitting the vector representing user interactions with a set of content items provided by the first content delivery platform are elaborated upon later in the specification.
In some embodiments, the first data processing system executes method 200. In some embodiments, the first data processing system 102 can determine the intersection 306 of
Where r represents an estimate of the number of user identifiers that appear in both the first set of user identifiers 302 and the second set of user identifiers 304. In some implementations, the first data processing system 102 can subtract an expected value of n/2 from each position in the first vector and the second vector before generating the value for r. In such instances, the first data processing system 102 can determine the intersection r based on the following expression:
In some embodiments, the first data processing system 102 can estimate the size n of the first vector based on the sum of the values of all k-positions of the k-length first vector Zxk. In some embodiments, the For example, the first data processing system 102 can determine the size n based on the following expression:
In some embodiments, the previous expression can be used in step 210 and step 212 of method 200. In some embodiments, the sum computed as a part of the above expression is computer by either the second data processing system 104 or the third data processing system 106. The first data processing system 102 can similarly determine the size n of the second set of user identifiers 204 based on the second k-length vector Zyk. The sizes of the respective first and second vectors can then be used to subtract the respective value n/2 from the first and the second vectors.
The method 200 can include estimating a size of the intersection of the first set of user identifiers and the second set of user identifiers based on a dot product of the first vector Vxk and the second vector Vyk, as shown in
As the determination of the vector is based on the aggregate statistic of all the user identifiers within the corresponding set of user identifiers, the aggregation removes any correlation between the value of the vector and the identity of the user. Therefore, the vectors utilized to determine the estimate of the intersection are privacy safe.
In some embodiments, the data processing system executing method 200 can determine intermediate estimates of intersection based on pairwise dot products of vector of counts generated using the same hash function while executing step 214. Thus for example, the first data processing system 102 can generate a first intermediate vector r1 based on the dot product of V1xk and V1yk, r2 based on the dot product of V2xk and V2yk, and so on as show in
In some embodiments, the data processing system executing method 200 can subtract a value nx/k from each coordinate value of the vectors V1xk, V2xk, . . . , Vpxk, 902 and a value ny/k from each coordinate value of the second vectors V1yk, V2yk, . . . , Vpyk, 904, where nx and ny represent the number of user identifiers in the first set of user identifiers 302 and the second set of user identifiers 304, respectively. The number of user identifiers in the first and second set of user identifiers are estimated in steps 210 and 212 respectively. The first data processing system can subtract these values before carrying out the dot product of the vectors. In some embodiments, the values nx and ny can be received by the data processing system executing method 200 when receiving the first and second vector in steps 206 and 208 respectively.
In a non-limiting example embodiment, the code to implement parts of method 200 may look like the following:
def ComputeVocIntersetion(voc1, voc2, n1, n2, k):
“““
Args:
voc1, voc2: Vectors of counts for sets 1 and 2
n1, n2: Cardinalities of sets 1 and 2
k: Size of the vectors of counts
Returns:
The cardinality of the intersection of the two sets.
”””
assert len(voc1) == len(voc2) == k
return sum((voc[i]−n1/k)*(voc2[i]−n2/k) for i in range(k))
In some implementations, the second and the third data processing systems 104 and 106 could transmit the first and the second set of user identifiers 302 and 304, respectively, to the first data processing system 102 for the determination of a unique and unduplicated set of user identifiers. However, merely transmitting the first and the second set of user identifiers 302 and 304 can expose the identities of the users to the first data processing system, thereby defeating the privacy of the users associated with the user identifiers. For example, the entire history of content item interaction of one or more users may be exposed to the first data processing system 102. In some implementations, cryptographic techniques, such as private set intersection (PSI) can be utilized to allow a third party, such as the first data processing system 102, to determine an intersection of the first and the second set of user identifiers 302 and 304, while maintaining privacy. However, PSI implementations involve substantial communication overhead between the data computing systems, thereby increasing the computation time. In some implementations, cardinality estimators, such as hyperloglog, mentioned above, can be utilized to determine the union of the first and the second sets of user identifiers 302 and 304, where the union can be used to determine the intersection of the two sets. However, hyperloglog is not privacy safe.
The method 400 includes selecting the ith user identifier 404. This step can be executed, for example, by the second data processing system 104 or the third data processing system 106 to process the set of user identifiers retrieved in step 402.
The method 400 includes generating k hashes of the selected user identifier 406. The second data processing system 104 or the third data processing system 106 can generate k hashes h1(x1), h2(x1), h3(x1), . . . , hk(x1) of the selected user identifier x1, as shown in
In some embodiments, a salt can be added to each of the selected user identifier to enhance the privacy of the user. The salt can be a randomly generated string of bits that can be concatenated or somehow combined with the data structure containing the selected user identifier. In some embodiments, the salt can be pre-determined. In such embodiments, the salt can be pre-determined by an entity that is connected to system 100 via network 110. In some embodiments, each user identifier selected by method 400 is concatenated with the same salt. In some embodiments, each user identifier selected by method 400 is concatenated with a different salt. In some embodiments, the data processing systems executing method 400, for example, 104 or 106, may concatenate each user identifier with the same salt. In some embodiments, the two data processing systems executing the method 400 may use different salts.
In some embodiments, the salt is received by the data processing system executing method 400 by a third party provider. In some embodiments, before concatenating the salt with each user identifier, the salt is hashed using a pre-determined hash function. In such embodiments, the pre-determined hash function may be determined by the third party providing the salt. In some embodiments, the third party providing the salt may provide a new salt based on a fixed period of time. For example, the third party salt provider may provide a new salt after an hour, two hours, one day, two days, a week, two weeks, a month, two months or a year. In some embodiments, the third party salt provider may sign the salt with a public key belonging to the data processing system executing method 400.
The method 400 includes generating a first k-length vector, where coordinate values of the first k-length vector equal to a bit value of the corresponding kth hash 408. As shown in
The method 400 includes generating k-length vectors corresponding to all the user identifiers in the plurality of user identifiers retrieved in step 402. For example, the second data processing system 104 or third data processing system 106 can determine whether the currently generated k-length vector is the nth k-length generated vector 410. If no, then the second data processing system 104 or the third data processing system 106 can increment the counter i 312, and select the next user identifier from the plurality of user identifiers retrieved in step 402, and generate a k-length vector as discussed above. In this manner, the second data processing system 104 or the third data processing system 106 can generate n k-length vectors, where each of the n k-length vectors corresponds to a user identifier in the plurality of user identifiers retrieved in step 402.
The method 400 includes summing the n k-length vectors to generate an interaction vector 414. This can be called the binomial vector method. The second data processing 104 and the third data processing system 106 can sum the n k-length vectors corresponding to the n user identifiers in the plurality of user identifiers retrieved in step 402. The second data processing system 104 or the third data processing system 106 can perform a numerical addition of the “0”s and the “1”s in a bit position of the n k-length vectors V1k to Vnk to generate a k-length first Zxk. In a non-limiting example, if there were 10 k-length vectors where six of the k-length vectors had a “1” in the first bit position and the remaining four of the k-length vectors had a “0” in the first bit position, the k-length first vector Zxk can have a value 6 in the first position. Typically, for a large number of k-length vectors (i.e., for large values of n), the value at each kth position of the first vector Zxk would be approximately equal to n/2 as shown in
The method 400 includes transmitting the interaction vector via a network 416. In some embodiments, the second data processing system 104 or the third data processing system 106 transmits the interaction vector generated in step 414 to the first data processing system 102. In some embodiments, transmitting the interaction vector includes transmitting the vector via an encrypted communication channel, for example HTTPS. In some embodiments, prior to transmitting the interaction vector, n/2 is subtracted from each coordinate in the interaction vector. In some embodiments, the number of user interactions n is transmitted along with the interaction vector. In some embodiments, transmitting the interaction vector includes transmitting a plurality of vectors of counts. In such embodiments, prior to transmitting the plurality of vectors of counts, n/2 is subtracted from each coordinate in each of the plurality of the vectors of counts.
The method 500 includes selecting the ith user identifier 504. This step can be executed, for example, by the second data processing system 104 or the third data processing system 106 to process the first set of user identifiers 302 or the second set of user identifiers 304.
The method 500 includes generating a hash of the selected user identifier 506. The second data processing system 104 or the third data processing system 106 can generate a hash using a hash function. In some embodiments, the hash function is based on the data identifying a set of hash functions in step 501. In some embodiments, if there is more than one hash function in the set of hash functions received in step 501, the method may choose one of the hash functions in the set of hash functions to perform the hash computation. In a non-limiting example, the method may choose the first hash function in the set of hash functions. For example, as shown in
In some embodiments, a salt can be added to each of the selected user identifier to enhance the privacy of the user. In some embodiments, the salt is a randomly generated string of bits that is concatenated with the data structure containing the selected user identifier. In some embodiments, the salt can be pre-determined. In some embodiments, the salt can be pre-determined by a third party that is connected to system 100 via network 110. In some embodiments, each user identifier selected by method 500 is concatenated with the same salt. In some embodiments, each user identifier selected by method 500 is concatenated with a different salt. In some embodiments, the data processing systems executing method 500, for example, 104 or 106, may concatenate each user identifier with the same salt. In some embodiments, the two data processing systems executing the method 400 may use different salts.
In some embodiments, the salt is received by the data processing system executing method 500 by a third party provider. In some embodiments, before concatenating the salt with each user identifier, the salt is hashed using a pre-determined hash function. In such embodiments, the pre-determined hash function may be determined by the third party providing the salt. In some embodiments, the third party providing the salt may provide a new salt based on a fixed period of time. For example, the third party salt provider may provide a new salt after an hour, two hours, one day, two days, a week, two weeks, a month, two months or a year. In some embodiments, the third party salt provider may sign the salt with a public key belonging to the data processing system executing method 500.
The method 500 includes incrementing the count of a register corresponding to m-bits of the hash value 508. The second data processing system 104 or the third data processing system 106 can select a set of bits of the hash value to determine the appropriate register to increment. For example, as shown in
The method 500 includes generating hashes and incrementing counts or registers for all user identifiers in the first set of user identifiers. This is called the vector of counts method. For example, the second data processing system 104 or the third data processing system 106 can determine whether the currently generated hash value is for the nth user identifier 510. If no, the data processing system executing the method can increment a counter i 512, and select the next user identifier from the plurality of user identifiers retrieved in step 502. For example, referring to
In some embodiments, the method 500 may add noise to one or more of the registers in register set 520. In some embodiments, the method 500 may add noise to one or more coordinates of the vector representation based off of register set 520. In these embodiments, the method 500 may add Laplacian noise to one or more of the registers in register set 520. In some embodiments, the method 500 may add Laplacian noise to all of the registers in register set 520. In some embodiments, the method 500 may add a vector of Laplacian noise to the interaction vector based on the set of registers 520. In these embodiments, the vector of Laplacian noise may have the same cardinality as the interaction vector based on the set of registers 520. In certain embodiments, the method 500 may subtract the expected value of each of the registers from the contents of each register. In such embodiments, the expected value of each register could be equal to total count of the register set 520 divided by the number of registers in register set 520, designated in
In a non-limiting example embodiment, the code to implement parts of method 500 may look like the following:
def ComputeVectorOfCounts(k, b, user_set):
“““
Args:
k: Size of the vector to be returned.
b: Scale factor of the Laplacian noise.
user_set: Deduplicated set of user IDs.
Returns:
The vector of counts of size k for the given user
set, with Laplacian noise of scale b added.
”””
hashed_user_set = get_hashed_user_set(user_set)
user_buckets = [get_last_k_digits(id, k) for id in
hashed_user_set]
voc = [ ]
for i in range(k):
voc.append(user_buckets.count(i) +
generate_laplace_noise(b))
return voc
In some embodiments, the method 500 may use a hybrid approach to generate a plurality of interaction vectors. In particular, in the hybrid approach, the data processing system executing the method 500 can generate a vector of counts using not just one hash function, as in the vector of counts approach, but generating p vectors of counts using p hash functions. In some embodiments, the plurality of hash functions are identified by the data received in step 501.
The method 500 includes generating a k-length interaction vector based on the register values 514. As mentioned above, the value of the counts of the registers 520 can represent the coordinates of a k-length vector Vxk. The method 500 includes transmitting the interaction vector via a network 516. In some embodiments, the second data processing system 104 or the third data processing system 106 transmits the interaction vector generated in step 514 to the first data processing system 102. In some embodiments, transmitting the interaction vector includes transmitting the vector via an encrypted communication channel, for example HTTPS. In some embodiments, the number of user interactions n is transmitted along with the interaction vector. In some embodiments, transmitting the interaction vector includes transmitting a plurality of vectors of counts. In some embodiments, prior to transmitting the interaction vector, n/k is subtracted from each coordinate in the interaction vector.
In some embodiments, the system 100 can apply additional techniques to improve the privacy of the approaches discussed above. For example, in some embodiments, the second data processing system 104 and the third data processing system 106 can add noise to the counts when generating vector of counts discussed above in relation to
In yet another approach, the user identifiers can be encrypted or hashed prior to generating the vectors discussed above in relation to
In some embodiments, the counts in a vector of counts can be permuted prior to communicating the vectors to the first data processing system 102. For example, the second data processing system 104 can permute or re-order the counts in the vectors Vxk or V1xk prior to communicating the vectors to the first data processing system 102. The third data processing system 106 may also similarly permute its respective vectors of counts prior to sending the vectors to the first data processing system. Both the first and the second data processing systems 104 and 106 can agree on a permutation scheme and keep the permutation secret. In some embodiments, the first data processing system 102 can select and transmit the desired permutation scheme to the second and the third data processing systems 104 and 106, such that both the systems utilize matching permutation schemes. Permuting the vectors in the vectors of counts can improve the privacy of the user identities in instances where vectors are formed from the same user identities, and the intersection of the vectors may still include some information related to the user identities.
In the computer system 800 of
The processor 820 of the computer system 800 shown in
The output devices 810 of the computer system 800 shown in
Implementations of the subject matter and the operations described in this specification can be implemented in digital electronic circuitry, or in computer software embodied on a tangible medium, firmware, or hardware, including the structures disclosed in this specification and their structural equivalents, or in combinations of one or more of them. Implementations of the subject matter described in this specification can be implemented as one or more computer programs, i.e., one or more components of computer program instructions, encoded on computer storage medium for execution by, or to control the operation of, data processing apparatus. The program instructions can be encoded on an artificially-generated propagated signal, e.g., a machine-generated electrical, optical, or electromagnetic signal that is generated to encode information for transmission to suitable receiver apparatus for execution by a data processing apparatus. A computer storage medium can be, or be included in, a computer-readable storage device, a computer-readable storage substrate, a random or serial access memory array or device, or a combination of one or more of them. Moreover, while a computer storage medium is not a propagated signal, a computer storage medium can include a source or destination of computer program instructions encoded in an artificially-generated propagated signal. The computer storage medium can also be, or be included in, one or more separate physical components or media (e.g., multiple CDs, disks, or other storage devices).
The features disclosed herein may be implemented on a smart television module (or connected television module, hybrid television module, etc.), which may include a processing module configured to integrate internet connectivity with more traditional television programming sources (e.g., received via cable, satellite, over-the-air, or other signals). The smart television module may be physically incorporated into a television set or may include a separate device such as a set-top box, Blu-ray or other digital media player, game console, hotel television system, and other companion device. A smart television module may be configured to allow viewers to search and find videos, movies, photos and other content on the web, on a local cable TV channel, on a satellite TV channel, or stored on a local hard drive. A set-top box (STB) or set-top unit (STU) may include an information appliance device that may contain a tuner and connect to a television set and an external source of signal, turning the signal into content which is then displayed on the television screen or other display device. A smart television module may be configured to provide a home screen or top level screen including icons for a plurality of different applications, such as a web browser and a plurality of streaming media services, a connected cable or satellite media source, other web “channels”, etc. The smart television module may further be configured to provide an electronic programming guide to the user. A companion application to the smart television module may be operable on a mobile computing device to provide additional information about available programs to a user, to allow the user to control the smart television module, etc. In alternate implementations, the features may be implemented on a laptop computer or other personal computer, a smartphone, other mobile phone, handheld computer, a tablet PC, or other computing device.
The operations described in this specification can be implemented as operations performed by a data processing apparatus on data stored on one or more computer-readable storage devices or received from other sources.
The terms “data processing apparatus”, “data processing system”, “user device” or “computing device” encompasses all kinds of apparatus, devices, and machines for processing data, including by way of example a programmable processor, a computer, a system on a chip, or multiple ones, or combinations, of the foregoing. The apparatus can include special purpose logic circuitry, e.g., an FPGA (field programmable gate array) or an ASIC (application-specific integrated circuit). The apparatus can also include, in addition to hardware, code that creates an execution environment for the computer program in question, e.g., code that constitutes processor firmware, a protocol stack, a database management system, an operating system, a cross-platform runtime environment, a virtual machine, or a combination of one or more of them. The apparatus and execution environment can realize various different computing model infrastructures, such as web services, distributed computing and grid computing infrastructures.
A computer program (also known as a program, software, software application, script, or code) can be written in any form of programming language, including compiled or interpreted languages, declarative or procedural languages, and it can be deployed in any form, including as a stand-alone program or as a module, component, subroutine, object, or other unit suitable for use in a computing environment. A computer program may, but need not, correspond to a file in a file system. A program can be stored in a portion of a file that holds other programs or data (e.g., one or more scripts stored in a markup language document), in a single file dedicated to the program in question, or in multiple coordinated files (e.g., files that store one or more modules, sub-programs, or portions of code). A computer program can be deployed to be executed on one computer or on multiple computers that are located at one site or distributed across multiple sites and interconnected by a communication network.
The processes and logic flows described in this specification can be performed by one or more programmable processors executing one or more computer programs to perform actions by operating on input data and generating output. The processes and logic flows can also be performed by, and apparatuses can also be implemented as, special purpose logic circuitry, e.g., an FPGA (field programmable gate array) or an ASIC (application-specific integrated circuit).
Processors suitable for the execution of a computer program include, by way of example, both general and special purpose microprocessors, and any one or more processors of any kind of digital computer. Generally, a processor will receive instructions and data from a read-only memory or a random access memory or both. The essential elements of a computer are a processor for performing actions in accordance with instructions and one or more memory devices for storing instructions and data. Generally, a computer will also include, or be operatively coupled to receive data from or transfer data to, or both, one or more mass storage devices for storing data, e.g., magnetic, magneto-optical disks, or optical disks. However, a computer need not have such devices. Moreover, a computer can be embedded in another device, e.g., a mobile telephone, a personal digital assistant (PDA), a mobile audio or video player, a game console, a Global Positioning System (GPS) receiver, or a portable storage device (e.g., a universal serial bus (USB) flash drive), for example. Devices suitable for storing computer program instructions and data include all forms of non-volatile memory, media and memory devices, including by way of example semiconductor memory devices, e.g., EPROM, EEPROM, and flash memory devices; magnetic disks, e.g., internal hard disks or removable disks; magneto-optical disks; and CD-ROM and DVD-ROM disks. The processor and the memory can be supplemented by, or incorporated in, special purpose logic circuitry.
To provide for interaction with a user, implementations of the subject matter described in this specification can be implemented on a computer having a display device, e.g., a CRT (cathode ray tube), plasma, or LCD (liquid crystal display) monitor, for displaying information to the user and a keyboard and a pointing device, e.g., a mouse or a trackball, by which the user can provide input to the computer. Other kinds of devices can be used to provide for interaction with a user as well; for example, feedback provided to the user can include any form of sensory feedback, e.g., visual feedback, auditory feedback, or tactile feedback; and input from the user can be received in any form, including acoustic, speech, or tactile input. In addition, a computer can interact with a user by sending documents to and receiving documents from a device that is used by the user; for example, by sending web pages to a web browser on a user's client device in response to requests received from the web browser.
Implementations of the subject matter described in this specification can be implemented in a computing system that includes a back-end component, e.g., as a data server, or that includes a middleware component, e.g., an application server, or that includes a front-end component, e.g., a client computer having a graphical user interface or a Web browser through which a user can interact with an implementation of the subject matter described in this specification, or any combination of one or more such back-end, middleware, or front-end components. The components of the system can be interconnected by any form or medium of digital data communication, e.g., a communication network. Examples of communication networks include a local area network (“LAN”) and a wide area network (“WAN”), an inter-network (e.g., the Internet), and peer-to-peer networks (e.g., ad hoc peer-to-peer networks).
The computing system such as the data processing systems 102, 104, 106, and 108 can include clients and servers. For example, the data processing systems 102, 104, 106, and 108 can include one or more servers in one or more data centers or server farms. A client and server are generally remote from each other and typically interact through a communication network. The relationship of client and server arises by virtue of computer programs running on the respective computers and having a client-server relationship to each other. In some implementations, a server transmits data (e.g., an HTML page) to a client device (e.g., for purposes of displaying data to and receiving user input from a user interacting with the client device). Data generated at the client device (e.g., a result of the user interaction) can be received from the client device at the server.
While this specification contains many specific implementation details, these should not be construed as limitations on the scope of any inventions or of what may be claimed, but rather as descriptions of features specific to particular implementations of the systems and methods described herein. Certain features that are described in this specification in the context of separate implementations can also be implemented in combination in a single implementation. Conversely, various features that are described in the context of a single implementation can also be implemented in multiple implementations separately or in any suitable subcombination. Moreover, although features may be described above as acting in certain combinations and even initially claimed as such, one or more features from a claimed combination can in some cases be excised from the combination, and the claimed combination may be directed to a subcombination or variation of a subcombination.
Similarly, while operations are depicted in the drawings in a particular order, this should not be understood as requiring that such operations be performed in the particular order shown or in sequential order, or that all illustrated operations be performed, to achieve desirable results. In some cases, the actions recited in the claims can be performed in a different order and still achieve desirable results. In addition, the processes depicted in the accompanying figures do not necessarily require the particular order shown, or sequential order, to achieve desirable results.
In certain circumstances, multitasking and parallel processing may be advantageous. Moreover, the separation of various system components in the implementations described above should not be understood as requiring such separation in all implementations, and it should be understood that the described program components and systems can generally be integrated together in a single software product or packaged into multiple software products. For example, the data processing systems 102, 104, and/or 106 could be a single module, a logic device having one or more processing modules, one or more servers, or part of a search engine.
Having now described some illustrative implementations and implementations, it is apparent that the foregoing is illustrative and not limiting, having been presented by way of example. In particular, although many of the examples presented herein involve specific combinations of method acts or system elements, those acts and those elements may be combined in other ways to accomplish the same objectives. Acts, elements and features discussed only in connection with one implementation are not intended to be excluded from a similar role in other implementations or implementations.
The phraseology and terminology used herein is for the purpose of description and should not be regarded as limiting. The use of “including” “comprising” “having” “containing” “involving” “characterized by” “characterized in that” and variations thereof herein, is meant to encompass the items listed thereafter, equivalents thereof, and additional items, as well as alternate implementations consisting of the items listed thereafter exclusively. In one implementation, the systems and methods described herein consist of one, each combination of more than one, or all of the described elements, acts, or components.
Any references to implementations or elements or acts of the systems and methods herein referred to in the singular may also embrace implementations including a plurality of these elements, and any references in plural to any implementation or element or act herein may also embrace implementations including only a single element. References in the singular or plural form are not intended to limit the presently disclosed systems or methods, their components, acts, or elements to single or plural configurations. References to any act or element being based on any information, act or element may include implementations where the act or element is based at least in part on any information, act, or element.
Any implementation disclosed herein may be combined with any other implementation, and references to “an implementation,” “some implementations,” “an alternate implementation,” “various implementation,” “one implementation” or the like are not necessarily mutually exclusive and are intended to indicate that a particular feature, structure, or characteristic described in connection with the implementation may be included in at least one implementation. Such terms as used herein are not necessarily all referring to the same implementation. Any implementation may be combined with any other implementation, inclusively or exclusively, in any manner consistent with the aspects and implementations disclosed herein.
References to “or” may be construed as inclusive so that any terms described using “or” may indicate any of a single, more than one, and all of the described terms.
Where technical features in the drawings, detailed description or any claim are followed by reference signs, the reference signs have been included for the sole purpose of increasing the intelligibility of the drawings, detailed description, and claims. Accordingly, neither the reference signs nor their absence have any limiting effect on the scope of any claim elements.
The systems and methods described herein may be embodied in other specific forms without departing from the characteristics thereof. Although the examples provided herein relate to controlling the display of content of information resources, the systems and methods described herein can include applied to other environments. The foregoing implementations are illustrative rather than limiting of the described systems and methods. Scope of the systems and methods described herein is thus indicated by the appended claims, rather than the foregoing description, and changes that come within the meaning and range of equivalency of the claims are embraced therein.
Further to the descriptions above, a user may be provided with controls allowing the user to make an election as to both if and when systems, programs, or features described herein may enable collection of user information (e.g., information about a user's social network, social actions, or activities, profession, a user's preferences, or a user's current location), and if the user is sent content or communications from a server. In addition, certain data may be treated in one or more ways before it is stored or used, so that personally identifiable information is removed. For example, a user's identity may be treated so that no personally identifiable information can be determined for the user, or a user's geographic location may be generalized where location information is obtained (such as to a city, ZIP code, or state level), so that a particular location of a user cannot be determined. Thus, the user may have control over what information is collected about the user, how that information is used, and what information is provided to the user.
In further detail and as an example, results from comparison between different architectures and model parameters can be described herein. The results described herein are not meant to limit the scope of the invention. All the architectures implemented herein can be comprised of the elements that make up system 100. In the non-limiting example embodiments described herein, the data processing system 102 is responsible for estimating the union between the two sets of user data 302 and 304. The data processing system 104 is responsible for generating the first interaction vector using, for example, the method 500 and set 302. The data processing system 106 is responsible for generating the second interaction vector using, for example, the method 500 and set 304. In this example embodiment, the data processing systems 102, 104, and 106 can communicate over network 110. The non-limiting example embodiments described herein use the vector of counts approach.
In an exemplary embodiment, the accuracy for estimating the size of the union of two sets of user identifiers, for example 302 and 304, could depend on set cardinalities and the magnitude of their intersection. In some exemplary embodiments, the accuracy for estimating the size of the union of two sets of user identifiers could depend on the size of the interaction vector generated, for example, in method 400 or method 500. In some exemplary embodiments, the accuracy for estimating the size of the union of two sets of user identifiers could depend on the scale of the noise that is added to the interaction vectors.
In a non-limiting exemplary embodiment for implementing and testing various architectures, which does not limit the scope of the invention, the accuracy of the implementation is tested while varying the interaction vector cardinality and the size of the sets user identifiers 302 and 304. The data from this example experiment is illustrated in
The plot included in
In another non-limiting exemplary embodiment, which does not limit the scope of the invention, the accuracy of the implementation is tested while varying the set cardinality ratio of N1 (302) and N2 (304). In this non-limiting example embodiment, all other parameters are fixed to the values in the previous experiment.
As demonstrated by the plot included in
In another non-limiting exemplary embodiment, which does not limit the scope of the invention, the accuracy of the implementation is tested while varying the fraction of users that are shared (306) by N1 (302) and N2 (304). In this non-limiting example embodiment, both sets N1 (302) and N2 (304) are assumed to have the same cardinality (N1=N2). The scale of the Laplacian noise applied in this exemplary embodiment is fixed at ε=ln(3), where the scale of the Laplacian noise is equal to b=1/ε.
The data from this non-limiting example embodiment illustrated in
In another non-limiting exemplary embodiment for implementing and testing various architectures, which does not limit the scope of the invention, the accuracy of the implementation is tested while varying scale of the Laplacian noise (b=1/ε). In the example embodiment described herein, both user identifier sets N1 (302) and N2 (304) have the same cardinality (N1=N2). The intersection of both sets (306) is fixed at one tenth of the size of N1.
The data from this non-limiting example embodiment illustrated in
Ma, Sheng, Schneider, Scott, Daub, Michael, Knightbrook, Joseph Sean Cahill Goodknight, Book, Laura
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